利用机器学习算法从CT图像中检测新冠肺炎疾病

IF 1 Q3 MULTIDISCIPLINARY SCIENCES gazi university journal of science Pub Date : 2023-02-14 DOI:10.35378/gujs.1150388
Mahmut Nedim Ekersular, A. Alkan
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引用次数: 0

摘要

随着2019年11月发现严重急性呼吸系统综合征冠状病毒2型,世界变得非常不同。由该病毒引起的新冠肺炎疾病已达到流行病的程度,并在继续。这种病毒是人类历史上最具传染性和致命性的病原体之一,病例数接近6亿,死亡人数超过600万。它已经并将继续在人们接触的每个领域表现出来,从商业生活到经济、交通到教育、社会生活到心理。尽管开发的疫苗使死亡人数部分减少,但病毒不断发生的突变和传播率的增加相应地降低了疫苗的有效性,死亡人数往往会随着感染人数的增加而增加。准确而迅速地检测这种流行病无疑是重要的,这是人类在第二次世界大战后的上个世纪所经历的最大危机。在这项研究中,提出了一种基于机器学习的人工智能方法,用于从计算机断层扫描图像中检测新冠肺炎。使用局部二进制模式提取具有两个类别的图像的特征。数据集中保留用于训练的图像用于训练机器学习模型。使用以前未使用的测试图像对经过训练的模型进行测试。虽然Fine K-Nearest Neighbors模型在训练图像中达到了0.984的最高精度,但三次支持向量机在测试图像中获得了0.93的最高精度值。这些结果高于使用相同数据集的基于深度学习的研究。
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Detection of COVID-19 Disease with Machine Learning Algorithms from CT Images
With the identification of the SARS-COV-2 virus in November 2019, the world has become very different. The COVID-19 disease caused by the virus has reached epidemic proportions and continues. This virus, which is one of the most contagious and deadly pathogens in human history with the number of cases approaching 600 million and the number of deaths exceeding 6 million, has shown and continues to show itself in every area that people come into contact with, from business life to economy, transportation to education, social life to psychology. Although the developed vaccines provide a partial decrease in the number of deaths, the mutations that the virus constantly undergoes and the increase in the transmission rate accordingly reduce the effectiveness of the vaccines, and the number of deaths tends to increase as the number of infected people. It is undoubtedly important that the detection of this epidemic disease, which is the biggest crisis that humanity has experienced in the last century after World War II, is carried out accurately and quickly. In this study, a machine learning-based artificial intelligence method has been proposed for the detection of COVID-19 from computed tomography images. The features of images with two classes are extracted using the Local Binary Pattern. The images reserved for training in the dataset were used for training machine learning models. Trained models were tested with previously unused test images. While the Fine K-Nearest Neighbors model reached the highest accuracy with a value of 0.984 for the training images, the highest accuracy value was obtained by the Cubic Support Vector Machine with 0.93 for the test images. These results are higher than the deep learning-based study using the same data set.
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来源期刊
gazi university journal of science
gazi university journal of science MULTIDISCIPLINARY SCIENCES-
CiteScore
1.60
自引率
11.10%
发文量
87
期刊介绍: The scope of the “Gazi University Journal of Science” comprises such as original research on all aspects of basic science, engineering and technology. Original research results, scientific reviews and short communication notes in various fields of science and technology are considered for publication. The publication language of the journal is English. Manuscripts previously published in another journal are not accepted. Manuscripts with a suitable balance of practice and theory are preferred. A review article is expected to give in-depth information and satisfying evaluation of a specific scientific or technologic subject, supported with an extensive list of sources. Short communication notes prepared by researchers who would like to share the first outcomes of their on-going, original research work are welcome.
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